Patent classifications
G06V10/28
IMAGING DEVICE, IMAGING SYSTEM, AND IMAGING METHOD
Provided is an imaging device including: an imaging unit (130) that generates a one frame image by sequentially receiving each reflected light reflected by a subject by intermittently and sequentially irradiating the subject with each irradiation light having a different wavelength according to a position of the moving subject, temporarily and sequentially holding signal information based on the reflected light of each wavelength, and collectively reading the held signal information; and a combining unit (140) that generates a combined image by cutting a subject image corresponding to the reflected light of each wavelength from the one frame image and superimposing a plurality of the cut subject images.
IMAGING DEVICE, IMAGING SYSTEM, AND IMAGING METHOD
Provided is an imaging device including: an imaging unit (130) that generates a one frame image by sequentially receiving each reflected light reflected by a subject by intermittently and sequentially irradiating the subject with each irradiation light having a different wavelength according to a position of the moving subject, temporarily and sequentially holding signal information based on the reflected light of each wavelength, and collectively reading the held signal information; and a combining unit (140) that generates a combined image by cutting a subject image corresponding to the reflected light of each wavelength from the one frame image and superimposing a plurality of the cut subject images.
TARGET RECOGNITION DEVICE
A target recognition device includes a roadside object determination unit, a coordinate calculation unit, a road boundary estimation unit, a distance calculation unit, and a likelihood increasing unit. The roadside object determination unit determines whether a target has a feature of a roadside object. The coordinate calculation unit calculates a coordinate in a lateral direction of the target. The road boundary estimation unit estimates a road boundary. The distance calculation unit calculates a distance from the target to the road boundary. The likelihood increasing unit increases a likelihood that the target is a roadside object, on condition that the distance is a preset threshold value or less.
TARGET RECOGNITION DEVICE
A target recognition device includes a roadside object determination unit, a coordinate calculation unit, a road boundary estimation unit, a distance calculation unit, and a likelihood increasing unit. The roadside object determination unit determines whether a target has a feature of a roadside object. The coordinate calculation unit calculates a coordinate in a lateral direction of the target. The road boundary estimation unit estimates a road boundary. The distance calculation unit calculates a distance from the target to the road boundary. The likelihood increasing unit increases a likelihood that the target is a roadside object, on condition that the distance is a preset threshold value or less.
Methods and systems for traffic monitoring
A system and method for determining a dimension of a target. The method includes: determining a camera parameter, the camera parameter including at least one of a focal length, a yaw angle, a roll angle, a pitch angle, or a height of one or more cameras; acquiring a first image and a second image of an target captured by the one or more cameras; generating a first corrected image and a second corrected image by correcting the first image and the second image; determining a parallax between a pixel in the first corrected image and a corresponding pixel in the second corrected image; determining an outline of the target; and determining a dimension of the target based at least in part on the camera parameter, the parallax, and the outline of the target.
Methods and systems for traffic monitoring
A system and method for determining a dimension of a target. The method includes: determining a camera parameter, the camera parameter including at least one of a focal length, a yaw angle, a roll angle, a pitch angle, or a height of one or more cameras; acquiring a first image and a second image of an target captured by the one or more cameras; generating a first corrected image and a second corrected image by correcting the first image and the second image; determining a parallax between a pixel in the first corrected image and a corresponding pixel in the second corrected image; determining an outline of the target; and determining a dimension of the target based at least in part on the camera parameter, the parallax, and the outline of the target.
Processing Apparatus and Method and Storage Medium
A processing apparatus includes a collection module and a training module, the training module includes a backbone network and a region proposal network (RPN) layer, the backbone network is connected to the RPN layer, and the RPN layer includes a class activation map (CAM) unit. The collection module is configured to obtain an image, where the image includes an image with an instance-level label and an image with an image-level label. The backbone network is used to output a feature map of the image based on the image obtained by the collection module.
Processing Apparatus and Method and Storage Medium
A processing apparatus includes a collection module and a training module, the training module includes a backbone network and a region proposal network (RPN) layer, the backbone network is connected to the RPN layer, and the RPN layer includes a class activation map (CAM) unit. The collection module is configured to obtain an image, where the image includes an image with an instance-level label and an image with an image-level label. The backbone network is used to output a feature map of the image based on the image obtained by the collection module.
PINCH GESTURE DETECTION AND RECOGNITION METHOD, DEVICE AND SYSTEM
The present application relates to the technical field of image recognition and provides a pinch gesture detection and recognition method, which is applied to an electronic device and includes: acquiring, in real time, image data of each frame in a video to be detected; performing a hand location detection on the image data based on a pre-trained hand detection model, to determine a hand position of the image data; performing a skeleton point recognition at the hand position based on the pre-trained skeleton point recognition model, to determine a preset number of skeleton points at the hand position; and determining whether a hand corresponding to the image data is in a pinch gesture or not according to information of a distance between the skeleton points of preset fingers.
PINCH GESTURE DETECTION AND RECOGNITION METHOD, DEVICE AND SYSTEM
The present application relates to the technical field of image recognition and provides a pinch gesture detection and recognition method, which is applied to an electronic device and includes: acquiring, in real time, image data of each frame in a video to be detected; performing a hand location detection on the image data based on a pre-trained hand detection model, to determine a hand position of the image data; performing a skeleton point recognition at the hand position based on the pre-trained skeleton point recognition model, to determine a preset number of skeleton points at the hand position; and determining whether a hand corresponding to the image data is in a pinch gesture or not according to information of a distance between the skeleton points of preset fingers.